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[1]
Foundation AI model predicts postoperative risks from clinical notes
Millions of Americans undergo surgery each year. After surgery, preventing complications like pneumonia, blood clots and infections can be the difference between a successful recovery and a prolonged, painful hospital stay -- or worse. More than 10% of surgical patients experience such complications, which can lead to longer stays in the intensive care unit (ICU), higher mortality rates and increased health care costs. Early identification of at-risk patients is crucial, but predicting these risks accurately remains a challenge. New advancements in artificial intelligence (AI), particularly large language models (LLMs), now offer a promising solution. A recent study led by Chenyang Lu, the Fullgraf Professor in computer science & engineering in the McKelvey School of Engineering and director of the AI for Health Institute (AIHealth) at Washington University in St. Louis, explores the potential of LLMs to predict postoperative complications by analyzing preoperative assessments and clinical notes. The work, published online Feb. 11 in npj Digital Medicine, shows that specialized LLMs can significantly outperform traditional machine learning methods in forecasting postoperative risks. "Surgery carries significant risks and costs, yet clinical notes hold a wealth of valuable insights from the surgical team," Lu said. "Our large language model, tailored specifically for surgical notes, enables early and accurate prediction of postoperative complications. By identifying risks proactively, clinicians can intervene sooner, improving patient safety and outcomes." Traditional risk prediction models have primarily relied on structured data, such as lab test results, patient demographics, and surgical details like procedure duration or the surgeon's experience. While this information is undoubtedly valuable, it often lacks the nuance of a patient's unique clinical narrative, which is captured in the detailed text of clinical notes. These notes contain personalized accounts of the patient's medical history, current condition, and other factors that influence the likelihood of complications. Lu and co-first authors Charles Alba and Bing Xue, both graduate students working with Lu at the time the study was conducted, employed specialized LLMs trained on publicly available medical literature and electronic health records. They then fine-tuned the pretrained model on surgical notes to make better predictions about surgical outcomes. The resulting method -- the first of its kind to process surgical notes and use them to make predictions about postoperative outcomes -- can go beyond structured data to recognize patterns in the patient's condition that might otherwise be overlooked. Based on nearly 85,000 surgical notes and associated patient outcomes from an academic medical center in the Midwest collected between 2018 and 2021, the team reported that their model performed far better than traditional methods in predicting complications. For every 100 patients who experienced a postoperative complication, the team's new model correctly predicted 39 more patients who had complications than traditional natural language processing models. Beyond the number of patients who could potentially have surgical complications caught early and mitigated, the study also showcases the power of foundation AI models, which are designed to multitask and can be applied to a wide range of problems. "Foundation models can be diversified, so they're generally more useful than specialized models. In this case, where lots of complications are possible, the model needs to be versatile enough to predict many different outcomes," said Alba, who is also a graduate student in WashU's Division of Computational & Data Sciences. "We fine-tuned our model for multiple tasks at same time and found that it predicts complications more accurately than models trained specifically to detect individual complications. This makes sense because complications are often correlated, so a unified foundational model benefits from shared knowledge about different outcomes and doesn't have to be painstakingly tuned for each one." "This versatile model has the potential to be deployed across various clinical settings to predict a wide range of complications," said Joanna Abraham, associate professor of anesthesiology at WashU Medicine and a member of the Institute for Informatics (I2) at WashU Medicine. "By identifying risks early, it could become an invaluable tool for clinicians, enabling them to take proactive measures and tailor interventions to improve patient outcomes." This study is supported by the Agency for Healthcare Research and Quality within the U.S. Department of Health and Human Services (R01 HS029324-02).
[2]
Foundation AI model predicts postoperative risks from clinical notes
Millions of Americans undergo surgery each year. After surgery, preventing complications like pneumonia, blood clots and infections can be the difference between a successful recovery and a prolonged, painful hospital stay -- or worse. More than 10% of surgical patients experience such complications, which can lead to longer stays in the intensive care unit (ICU), higher mortality rates and increased health care costs. Early identification of at-risk patients is crucial, but predicting these risks accurately remains a challenge. New advancements in artificial intelligence (AI), particularly large language models (LLMs), now offer a promising solution. A recent study led by Chenyang Lu, the Fullgraf Professor in computer science & engineering at the McKelvey School of Engineering and director of the AI for Health Institute (AIHealth) at Washington University in St. Louis, explores the potential of LLMs to predict postoperative complications by analyzing preoperative assessments and clinical notes. The work, published in npj Digital Medicine, shows that specialized LLMs can significantly outperform traditional machine learning methods in forecasting postoperative risks. "Surgery carries significant risks and costs, yet clinical notes hold a wealth of valuable insights from the surgical team," Lu said. "Our large language model, tailored specifically for surgical notes, enables early and accurate prediction of postoperative complications. By identifying risks proactively, clinicians can intervene sooner, improving patient safety and outcomes." Traditional risk prediction models have primarily relied on structured data, such as lab test results, patient demographics, and surgical details like procedure duration or the surgeon's experience. While this information is undoubtedly valuable, it often lacks the nuance of a patient's unique clinical narrative, which is captured in the detailed text of clinical notes. These notes contain personalized accounts of the patient's medical history, current condition, and other factors that influence the likelihood of complications. Lu and co-first authors Charles Alba and Bing Xue, both graduate students working with Lu at the time the study was conducted, employed specialized LLMs trained on publicly available medical literature and electronic health records. They then fine-tuned the pretrained model on surgical notes to make better predictions about surgical outcomes. The resulting method -- the first of its kind to process surgical notes and use them to make predictions about postoperative outcomes -- can go beyond structured data to recognize patterns in the patient's condition that might otherwise be overlooked. Based on nearly 85,000 surgical notes and associated patient outcomes from an academic medical center in the Midwest collected between 2018 and 2021, the team reported that their model performed far better than traditional methods in predicting complications. For every 100 patients who experienced a postoperative complication, the team's new model correctly predicted 39 more patients who had complications than traditional natural language processing models. Beyond the number of patients who could potentially have surgical complications caught early and mitigated, the study also showcases the power of foundation AI models, which are designed to multitask and can be applied to a wide range of problems. "Foundation models can be diversified, so they're generally more useful than specialized models. In this case, where lots of complications are possible, the model needs to be versatile enough to predict many different outcomes," said Alba, who is also a graduate student in WashU's Division of Computational & Data Sciences. "We fine-tuned our model for multiple tasks at the same time and found that it predicts complications more accurately than models trained specifically to detect individual complications. This makes sense because complications are often correlated, so a unified foundational model benefits from shared knowledge about different outcomes and doesn't have to be painstakingly tuned for each one." "This versatile model has the potential to be deployed across various clinical settings to predict a wide range of complications," said Joanna Abraham, associate professor of anesthesiology at WashU Medicine and a member of the Institute for Informatics (I2) at WashU Medicine. "By identifying risks early, it could become an invaluable tool for clinicians, enabling them to take proactive measures and tailor interventions to improve patient outcomes."
[3]
Foundation AI model predicts postoperative risks from clinical notes | Newswise
Millions of Americans undergo surgery each year. After surgery, preventing complications like pneumonia, blood clots and infections can be the difference between a successful recovery and a prolonged, painful hospital stay - or worse. More than 10% of surgical patients experience such complications, which can lead to longer stays in the intensive care unit (ICU), higher mortality rates and increased health care costs. Early identification of at-risk patients is crucial, but predicting these risks accurately remains a challenge. New advancements in artificial intelligence (AI), particularly large language models (LLMs), now offer a promising solution. A recent study led by Chenyang Lu, the Fullgraf Professor in computer science & engineering in the McKelvey School of Engineering and director of the AI for Health Institute (AIHealth) at Washington University in St. Louis, explores the potential of LLMs to predict postoperative complications by analyzing preoperative assessments and clinical notes. The work, published online Feb. 11 in npj Digital Medicine, shows that specialized LLMs can significantly outperform traditional machine learning methods in forecasting postoperative risks. "Surgery carries significant risks and costs, yet clinical notes hold a wealth of valuable insights from the surgical team," Lu said. "Our large language model, tailored specifically for surgical notes, enables early and accurate prediction of postoperative complications. By identifying risks proactively, clinicians can intervene sooner, improving patient safety and outcomes." Traditional risk prediction models have primarily relied on structured data, such as lab test results, patient demographics, and surgical details like procedure duration or the surgeon's experience. While this information is undoubtedly valuable, it often lacks the nuance of a patient's unique clinical narrative, which is captured in the detailed text of clinical notes. These notes contain personalized accounts of the patient's medical history, current condition, and other factors that influence the likelihood of complications. Lu and co-first authors Charles Alba and Bing Xue, both graduate students working with Lu at the time the study was conducted, employed specialized LLMs trained on publicly available medical literature and electronic health records. They then fine-tuned the pretrained model on surgical notes to make better predictions about surgical outcomes. The resulting method - the first of its kind to process surgical notes and use them to make predictions about postoperative outcomes - can go beyond structured data to recognize patterns in the patient's condition that might otherwise be overlooked. Based on nearly 85,000 surgical notes and associated patient outcomes from an academic medical center in the Midwest collected between 2018 and 2021, the team reported that their model performed far better than traditional methods in predicting complications. For every 100 patients who experienced a postoperative complication, the team's new model correctly predicted 39 more patients who had complications than traditional natural language processing models. Beyond the number of patients who could potentially have surgical complications caught early and mitigated, the study also showcases the power of foundation AI models, which are designed to multitask and can be applied to a wide range of problems. "Foundation models can be diversified, so they're generally more useful than specialized models. In this case, where lots of complications are possible, the model needs to be versatile enough to predict many different outcomes," said Alba, who is also a graduate student in WashU's Division of Computational & Data Sciences. "We fine-tuned our model for multiple tasks at same time and found that it predicts complications more accurately than models trained specifically to detect individual complications. This makes sense because complications are often correlated, so a unified foundational model benefits from shared knowledge about different outcomes and doesn't have to be painstakingly tuned for each one." "This versatile model has the potential to be deployed across various clinical settings to predict a wide range of complications," said Joanna Abraham, associate professor of anesthesiology at WashU Medicine and a member of the Institute for Informatics (I2) at WashU Medicine. "By identifying risks early, it could become an invaluable tool for clinicians, enabling them to take proactive measures and tailor interventions to improve patient outcomes." Alba C, Xue B, Abraham J, Kannampallil T, Lu C. The foundational capabilities of large language models in predicting postoperative risks using clinical notes. njp Digital Medicine, published online Feb. 11, 2025. DOI: https://www.nature.com/articles/s41746-025-01489-2 This study is supported by the Agency for Healthcare Research and Quality within the U.S. Department of Health and Human Services (R01 HS029324-02).
[4]
Specialized LLMs can outperform traditional methods in forecasting postoperative risks
Washington University in St. LouisMar 4 2025 Millions of Americans undergo surgery each year. After surgery, preventing complications like pneumonia, blood clots and infections can be the difference between a successful recovery and a prolonged, painful hospital stay - or worse. More than 10% of surgical patients experience such complications, which can lead to longer stays in the intensive care unit (ICU), higher mortality rates and increased health care costs. Early identification of at-risk patients is crucial, but predicting these risks accurately remains a challenge. New advancements in artificial intelligence (AI), particularly large language models (LLMs), now offer a promising solution. A recent study led by Chenyang Lu, the Fullgraf Professor in computer science & engineering in the McKelvey School of Engineering and director of the AI for Health Institute (AIHealth) at Washington University in St. Louis, explores the potential of LLMs to predict postoperative complications by analyzing preoperative assessments and clinical notes. The work, published online Feb. 11 in npj Digital Medicine, shows that specialized LLMs can significantly outperform traditional machine learning methods in forecasting postoperative risks. Surgery carries significant risks and costs, yet clinical notes hold a wealth of valuable insights from the surgical team. Our large language model, tailored specifically for surgical notes, enables early and accurate prediction of postoperative complications. By identifying risks proactively, clinicians can intervene sooner, improving patient safety and outcomes." Chenyang Lu, the Fullgraf Professor in computer science & engineering in the McKelvey School of Engineering and director of the AI for Health Institute (AIHealth) at Washington University in St. Louis Traditional risk prediction models have primarily relied on structured data, such as lab test results, patient demographics, and surgical details like procedure duration or the surgeon's experience. While this information is undoubtedly valuable, it often lacks the nuance of a patient's unique clinical narrative, which is captured in the detailed text of clinical notes. These notes contain personalized accounts of the patient's medical history, current condition, and other factors that influence the likelihood of complications. Lu and co-first authors Charles Alba and Bing Xue, both graduate students working with Lu at the time the study was conducted, employed specialized LLMs trained on publicly available medical literature and electronic health records. They then fine-tuned the pretrained model on surgical notes to make better predictions about surgical outcomes. The resulting method - the first of its kind to process surgical notes and use them to make predictions about postoperative outcomes - can go beyond structured data to recognize patterns in the patient's condition that might otherwise be overlooked. Based on nearly 85,000 surgical notes and associated patient outcomes from an academic medical center in the Midwest collected between 2018 and 2021, the team reported that their model performed far better than traditional methods in predicting complications. For every 100 patients who experienced a postoperative complication, the team's new model correctly predicted 39 more patients who had complications than traditional natural language processing models. Beyond the number of patients who could potentially have surgical complications caught early and mitigated, the study also showcases the power of foundation AI models, which are designed to multitask and can be applied to a wide range of problems. "Foundation models can be diversified, so they're generally more useful than specialized models. In this case, where lots of complications are possible, the model needs to be versatile enough to predict many different outcomes," said Alba, who is also a graduate student in WashU's Division of Computational & Data Sciences. "We fine-tuned our model for multiple tasks at same time and found that it predicts complications more accurately than models trained specifically to detect individual complications. This makes sense because complications are often correlated, so a unified foundational model benefits from shared knowledge about different outcomes and doesn't have to be painstakingly tuned for each one." "This versatile model has the potential to be deployed across various clinical settings to predict a wide range of complications," said Joanna Abraham, associate professor of anesthesiology at WashU Medicine and a member of the Institute for Informatics (I2) at WashU Medicine. "By identifying risks early, it could become an invaluable tool for clinicians, enabling them to take proactive measures and tailor interventions to improve patient outcomes." Washington University in St. Louis Journal reference: Alba, C., et al. (2025). The foundational capabilities of large language models in predicting postoperative risks using clinical notes. npj Digital Medicine. doi.org/10.1038/s41746-025-01489-2.
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Researchers at Washington University in St. Louis develop a specialized AI model that outperforms traditional methods in predicting postoperative complications by analyzing clinical notes, potentially improving patient outcomes and reducing healthcare costs.
Researchers at Washington University in St. Louis have developed a groundbreaking artificial intelligence (AI) model that significantly improves the prediction of postoperative complications. Led by Chenyang Lu, the Fullgraf Professor in computer science & engineering and director of the AI for Health Institute (AIHealth), the team has created a specialized large language model (LLM) that analyzes clinical notes to forecast surgical risks more accurately than traditional methods 1.
More than 10% of surgical patients experience complications such as pneumonia, blood clots, and infections, leading to prolonged hospital stays, higher mortality rates, and increased healthcare costs. Early identification of at-risk patients is crucial, but accurate prediction has remained a challenge 2.
The new AI model, unlike traditional risk prediction methods that rely on structured data, harnesses the wealth of information contained in clinical notes. These notes provide a nuanced view of a patient's medical history and current condition, offering insights that might otherwise be overlooked 3.
Lu and his team, including graduate students Charles Alba and Bing Xue, trained their LLM on publicly available medical literature and electronic health records. They then fine-tuned the model on surgical notes to enhance its predictive capabilities. The study, published in npj Digital Medicine, analyzed nearly 85,000 surgical notes and associated patient outcomes from a Midwest academic medical center between 2018 and 2021 4.
The results were impressive: for every 100 patients who experienced postoperative complications, the new model correctly identified 39 more cases than traditional natural language processing models 1.
The study also highlights the power of foundation AI models, which are designed to multitask and can be applied to various problems. Alba explains, "Foundation models can be diversified, so they're generally more useful than specialized models. In this case, where lots of complications are possible, the model needs to be versatile enough to predict many different outcomes" 2.
Joanna Abraham, associate professor of anesthesiology at WashU Medicine, emphasizes the model's potential: "This versatile model has the potential to be deployed across various clinical settings to predict a wide range of complications. By identifying risks early, it could become an invaluable tool for clinicians, enabling them to take proactive measures and tailor interventions to improve patient outcomes" 3.
The success of this AI model in predicting postoperative risks opens up new possibilities for improving patient care and reducing healthcare costs. By enabling early interventions and personalized treatment plans, this technology could significantly enhance surgical outcomes and patient safety 4.
Reference
[2]
Medical Xpress - Medical and Health News
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